Your velocity curve is already smoothed.
I know. See graph above with simply reduced acceleration derivation window. Goes wild
There is hardly any feature in the acceleration curve that corresponds to what the velocity curve does at the same time.
Make sure you retain how the derivation process works. They both use a wide window.
Instead, at 12.5 seconds, your acceleration curve shows features derived from the velocity curve at both the 12.1 s mark and the 12.9 s mark (and everything in between).
Absolutely. The velocity curve does similar with displacement.
If forces start to kick in or stop to act during that interval (drop distance: great), you'll distort their effect.
Of course. How much fidelity do you think is in the raw data ? It's good, but be realistic. I'm not looking for "jolts" here, and there's no way the Dan Rather data has the fidelity to reveal them. Was hard enough for WTC1 with the much superior Sauret footage. Dan Rather image quality is really not great.
In step 1, what is your input data (please please say it's the 60 t|s discrete data couples per second that you grabbed from video), and what comes out in the first step? Surely you get a distance curve before you get a velocity curve, no?
Of course.
Aha! So you DO have local polynomial functions - for the distance curve, right? Those are NOT yet the result of SG smoothing? But ... polynomials are already a smoothed curve to fit the 60/s data points?
I think you're getting confused with how SG is employed.
I suggest if you're having trouble with my words, that you have a surf, but again in maybe slightly different words...
input(displacement/time)
V
Apply SG filter, taking the value of the first derivative function of each 50 sample curve fit at the center-point of the window as the output (derived) value.
V
output(velocity/time)
Repeat from velocity to acceleration.
Your software gives you the (first) derivative of the fit, but not the function itself??
There would be 60 per second of data. Say, 360 functions for the normal duration of the graphs you;ve been looking at for the last year or so.
I have agreed with that statement about confidence that the trend is there repeatedly.
Splendid. What extra information do you think anyone
should be able to determine ? I don't think it's at all wise to go beyond general trend and magnitude.
Your velocity curve is a continuous, smooth curve (infinitely many "data" points).
It's a curve made up of the gradient of each associated curve fit at the point in question...if that makes sense to you.
I suspect more and more that you don't understand the implication that your acceleration curve is mostly bunk.
I understand what it does and does not show.
You still appear to be trying to figure out how SG based derivation works, so (no offence, but) how can you really understand what either the velocity or acceleration plots are showing ? I had
assumed that after discussing SG smoothing for so long that folk would have understood. I guess that was, well, ... my mistake I suppose.
It doesn't show the interesting features of the real movement
What interesting features ? (beyond revealing the trend in much more detail that previously available)
I just showed you the effect of reducing the window size (in my 2nd-previous post) to the already SG derived velocity data.
What interesting effects are there there ?
Your method apparently creates artefacts which distract more than enlighten.
It reveals the trend.
with which you can prove that the average acceleration was >g over that interval
Why would I want to ? I've done this many, many times. Many different methods. Same trend. That you've just (re?)"discovered" that there's a price to pay for the tradeoff between wild fluctuation and trend does not mean I'm going to ditch my considerable learning curve with this particular dataset.
I'll say it now...and competent acceleration plot using my Dan Rather dataset will tend towards the shape present in the SG acceleration plot already provided
I've set that one in stone now
Might be worth a reminder of tfk's previous acceleration profile derived from my data...
There's something familiar there, I think.
Yep, definitely something familiar goin'on. (17-08-2010)